Thinking Broad, Acting Fast: Latent Reasoning Distillation from Multi-Perspective Chain-of-Thought for E-Commerce Relevance
Baopu Qiu, Hao Chen, Yuanrong Wu, Changtong Zan, Chao Wei, Weiru Zhang, Xiaoyi Zeng

TL;DR
This paper introduces a multi-perspective chain-of-thought framework with latent reasoning distillation to improve e-commerce relevance modeling, achieving better accuracy and efficiency for real-time search applications.
Contribution
It proposes a novel multi-perspective CoT reasoning approach combined with latent reasoning distillation, enhancing relevance modeling and enabling low-latency inference in e-commerce search.
Findings
Significant offline performance improvements in relevance accuracy.
Enhanced user experience and commercial metrics in online A/B tests.
Efficient low-latency reasoning suitable for large-scale deployment.
Abstract
Effective relevance modeling is crucial for e-commerce search, as it aligns search results with user intent and enhances customer experience. Recent work has leveraged large language models (LLMs) to address the limitations of traditional relevance models, especially for long-tail and ambiguous queries. By incorporating Chain-of-Thought (CoT) reasoning, these approaches improve both accuracy and interpretability through multi-step reasoning. However, two key limitations remain: (1) most existing approaches rely on single-perspective CoT reasoning, which fails to capture the multifaceted nature of e-commerce relevance (e.g., user intent vs. attribute-level matching vs. business-specific rules); and (2) although CoT-enhanced LLM's offer rich reasoning capabilities, their high inference latency necessitates knowledge distillation for real-time deployment, yet current distillation methods…
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Taxonomy
TopicsInformation Retrieval and Search Behavior · Topic Modeling · Mobile Crowdsensing and Crowdsourcing
